Addressing Urban Management Challenges for Sustainable Development: Analyzing the Impact of Neighborhood Deprivation on Crime Distribution in Chicago
Abstract
:1. Introduction
- How have crime patterns and neighborhood deprivation in Chicago evolved over time and space from 2015 to 2022, and what is the relationship between these spatial distributions?
- What are the implications of the observed spatial relationships between urban deprivation and crime patterns for developing evidence-based policies and interventions that promote spatial justice and foster safer, more equitable urban environments?
2. Literature Review
3. Methodology
3.1. Data Sources
- Chicago Urban Crime Data: A comprehensive dataset containing geocoded crime incidents in Chicago from 2015 to 2022, obtained from the Chicago Data Portal. This dataset includes detailed information on various crime types, their spatial coordinates (x, y), and temporal attributes (date and time of occurrence). The Chicago Police Department publishes these data periodically through the Chicago Data Portal. The spatial coordinates are measured using latitude and longitude. The dataset includes all reported incidents of crime that occurred in the City of Chicago, excluding data protected under the Illinois Sunshine Laws. As of our study period, it contained over 1 million records. The data are based on crimes reported to the Chicago Police Department, including both arrested and non-arrested incidents.
- Chicago Area Deprivation Index (ADI) data: Developed by the University of Wisconsin-Madison, the ADI incorporates seventeen socioeconomic indicators derived from the American Community Survey (ACS) 5-year sample at the block group level. These indicators cover domains such as education, employment, income, housing, household composition, and household resources. ADI rankings are determined by calculating a composite score based on these indicators, with each census block group receiving a state rank from 1 to 10, where 1 indicates the lowest level of disadvantage and 10 the highest. In Chicago, ADI rankings ranged from 1 to 10 in both 2015 and 2022, reflecting the city’s diverse socioeconomic landscape.
3.2. Data Preprocessing
3.2.1. Crime Data Cleaning
- Removing duplicate entries based on unique incident identifiers
- Handling missing or invalid spatial coordinates by excluding records with null or out-of-bounds coordinates
- Standardizing temporal information to a consistent date–time format
3.2.2. Crime Rate Change Calculation
3.2.3. ADI Data Processing
3.3. Exploratory Spatial Analysis
3.3.1. Optimized Hotspot Analysis
- is the standardized statistic for tract I;
- is the crime rate in tract j;
- is the mean crime rate;
- s is the standard deviation of crime rates;
- wij is the spatial weight between tracts i and j;
- and n is the total number of tracts.
3.3.2. OLS Regression
- β0 is the intercept;
- β1 to β4 are the coefficients for each predictor variable;
- ε is the error term.
3.3.3. Local Bivariate Relationships Analysis
- represents the coordinates of the ith point in space;
- is the coefficient function for the kth variable at point I;
- are the explanatory variables at point I;
- is the error term.
3.4. Statistical Analysis
3.5. Software and Tools
- ArcGIS Pro 3.3.0 for spatial data processing, visualization, and hotspot analysis
- Python 3.8 with pandas and geopandas libraries for data manipulation and geocoding
4. Results
4.1. Exploratory Spatial Analysis
4.1.1. ADI and Crime Trends
4.1.2. Hotspot Analysis
- Statistically significant hotspots and coldspots were identified for both crime rates and ADI changes.
- The optimal distance band for crime rates (7293.7 m) suggests a more dispersed pattern compared to ADI changes (2578.9875 m).
- Crime rate hotspots indicate areas with significant increases in crime, while coldspots represent substantial decreases.
- ADI change hotspots represent areas with increasing socioeconomic disadvantage, while coldspots indicate improving conditions.
- Both analyses highlight substantial variability in trends across Chicago’s neighborhoods.
4.2. OLS Regression Results
- Crime incidents in 2015 and 2022 were significant predictors of crime change (p < 0.05).
- ADI scores in 2015 and 2022 were not statistically significant predictors (p > 0.05).
- The model explains a relatively small proportion of the variance in crime change (R-squared: 0.069).
- Residual diagnostics suggest potential issues with non-normality and possible multicollinearity.
4.3. Local Bivariate Relationships Analysis
- 2.
- Out of 869 census tracts, 627 (72.2%) showed no statistically significant relationship between ADI changes and crime rate changes, as detailed in Table 4.
- A total of 84 tracts (9.7%) exhibited a positive linear relationship, indicating that improved ADI rankings were associated with decreased crime rates.
- There were 34 tracts (3.9%) showing a negative linear relationship, where improved ADI rankings were associated with increased crime rates.
- Undefined complex relationships were displayed in 92 tracts (10.6%), suggesting more intricate dynamics between ADI and crime changes.
- The entropy results (Min: 0.1, Max: 0.9, Mean: 0.45, Median: 0.4) indicated moderate variability in the strength of local relationships.
- Applying False Discovery Rate (FDR) correction slightly reduced the number of statistically significant relationships detected (from 242 to 220).
5. Discussion
6. Conclusions
- Targeted Interventions: The identification of specific hotspots for both deprivation and crime changes provides valuable information for policymakers and law enforcement agencies. Resources and interventions should be tailored to address the unique challenges faced by different neighborhoods, rather than applying one-size-fits-all approaches. For example, Chicago’s Strategic Decision Support Centers (SDSCs), implemented in high-crime districts, have shown promising results in crime reduction. These centers combine real-time crime analysis, predictive policing, and community engagement. Additionally, the city’s Choose to Change program, which provides mentoring and therapy to at-risk youth in high-crime areas, has demonstrated success in reducing violent crime involvement. Such targeted, data-driven interventions exemplify the approach recommended by our findings.
- Integrated Approach: Given the complex relationships between socioeconomic factors and crime, efforts to improve public safety should be integrated with broader initiatives to address urban inequality. This may include investments in education, job training, affordable housing, and community development programs in areas of concentrated disadvantage.
- Spatial Justice: The persistence of deprivation hotspots underscores the need for a renewed focus on spatial justice in urban planning and policy. Efforts should be made to ensure more equitable distribution of resources and opportunities across all neighborhoods, with particular attention to historically marginalized areas.
- Data-Driven Decision Making: Our study demonstrates the value of fine-grained spatial analysis in understanding urban crime dynamics. Local governments and agencies should invest in robust data collection and analysis capabilities to inform evidence-based policymaking and resource allocation.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
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Analysis Metric | Result (Crime Rates 2015–2022) | Result (ADI Change 2015–2022) |
---|---|---|
Number of Valid Input Features | 869 | 869 |
Change Metrics | Min: −82.0, Max: 100.0, Mean: −25.27, Std Dev: 25.81 | Min: −6.0, Max: 5.0, Mean: 0.1653, Std Dev: 1.1096 |
Number of Outlier Locations Removed | 13 | 12 |
Optimal Fixed Distance Band | 7293.7 m | 2578.9875 m |
Percent of Features with <8 Neighbors | 0.2% | 9.9% |
Number of Output Features Identified | 538 | 77 |
Output Features Passing FDR Correction | 100% | 100% |
Variable | Coefficient | Std. Error | t-Value | p-Value | [95% Conf. Interval] |
---|---|---|---|---|---|
Intercept | 0.3997 | 0.155 | 2.572 | 0.010 | [0.095, 0.705] |
Crime incidents in 2015 | −0.0043 | 0.001 | −7.051 | <0.0001 | [−0.005, −0.003] |
Crime incidents in 2022 | 0.0034 | 0.001 | 6.238 | <0.0001 | [0.002, 0.004] |
ADI score in 2015 | 0.0407 | 0.038 | 1.076 | 0.282 | [−0.034, 0.115] |
ADI score in 2022 | −0.0440 | 0.037 | −1.176 | 0.240 | [−0.117, 0.029] |
Variable | Description |
---|---|
Dependent Variable | Crime Change Rate (2015–2022) |
Explanatory Variable | ADI_change (Changes in ADI Rankings 2015–2022) |
Number Of Neighbors | 30 |
Number Of Permutations | 199 |
Enable Local Scatterplot Pop-Ups | CREATE_POPUP |
Level Of Confidence | 90% |
Apply False Discovery Rate (Fdr) Correction | APPLY_FDR |
Scaling Factor (Alpha) | 0.5 |
Type of Relationship | Frequency |
---|---|
Concave | 23 |
Convex | 9 |
Negative Linear | 34 |
Not Significant | 627 |
Positive Linear | 84 |
Undefined Complex | 92 |
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Mansourihanis, O.; Maghsoodi Tilaki, M.J.; Sheikhfarshi, S.; Mohseni, F.; Seyedebrahimi, E. Addressing Urban Management Challenges for Sustainable Development: Analyzing the Impact of Neighborhood Deprivation on Crime Distribution in Chicago. Societies 2024, 14, 139. https://doi.org/10.3390/soc14080139
Mansourihanis O, Maghsoodi Tilaki MJ, Sheikhfarshi S, Mohseni F, Seyedebrahimi E. Addressing Urban Management Challenges for Sustainable Development: Analyzing the Impact of Neighborhood Deprivation on Crime Distribution in Chicago. Societies. 2024; 14(8):139. https://doi.org/10.3390/soc14080139
Chicago/Turabian StyleMansourihanis, Omid, Mohammad Javad Maghsoodi Tilaki, Shiva Sheikhfarshi, Fatemeh Mohseni, and Ebrahim Seyedebrahimi. 2024. "Addressing Urban Management Challenges for Sustainable Development: Analyzing the Impact of Neighborhood Deprivation on Crime Distribution in Chicago" Societies 14, no. 8: 139. https://doi.org/10.3390/soc14080139
APA StyleMansourihanis, O., Maghsoodi Tilaki, M. J., Sheikhfarshi, S., Mohseni, F., & Seyedebrahimi, E. (2024). Addressing Urban Management Challenges for Sustainable Development: Analyzing the Impact of Neighborhood Deprivation on Crime Distribution in Chicago. Societies, 14(8), 139. https://doi.org/10.3390/soc14080139